In this paper, we developed the solution of roadside LiDAR object detection using a combination of two unsupervised learning algorithms. The 3D point clouds are firstly converted into spherical coordinates and filled into the elevation-azimuth matrix using a hash function. After that, the raw LiDAR data were rearranged into new data structures to store the information of range, azimuth, and intensity. Then, the Dynamic Mode Decomposition method is applied to decompose the LiDAR data into low-rank backgrounds and sparse foregrounds based on intensity channel pattern recognition. The Coarse Fine Triangle Algorithm (CFTA) automatically finds the dividing value to separate the moving targets from static background according to range information. After intensity and range background subtraction, the foreground moving objects will be detected using a density-based detector and encoded into the state-space model for tracking. The output of the proposed solution includes vehicle trajectories that can enable many mobility and safety applications. The method was validated at both path and point levels and outperformed the state-of-the-art. In contrast to the previous methods that process directly on the scattered and discrete point clouds, the dynamic classification method can establish the less sophisticated linear relationship of the 3D measurement data, which captures the spatial-temporal structure that we often desire.
翻译:在本文中, 我们开发了路边 LiDAR 对象检测的解决方案, 使用了两种不受监督的学习算法。 3D点云首先被转换成球座坐标, 并使用散列函数填入高地- 氮基矩阵。 之后, 原始的 LiDAR 数据被重新排列为新的数据结构, 以存储范围、 方位和强度等信息。 然后, 动态模式分解方法被应用到将LIDAR 数据分解为低位背景和基于强度频道模式识别的分散地表层。 Coarse French Algorithm (CFTA) 自动找到将移动目标与静态背景相分离的分解值, 并用范围背景减后, 原始数据移动对象将使用基于密度的探测器进行检测, 并编码到州空间跟踪模型中。 拟议解决方案的输出包括车辆轨迹, 能够让许多移动和安全应用。 该方法在路径和点上都得到了验证, 并超越了状态- Dart 方位图( CFT) 。 在深度测量过程中, 与前一个不那么 的深度的深度测量方法对比, 。 。